Abstract:
Statistically, change point is the location or the time point such that observations
follow one distribution up to the point and then another afterwards. Change point
problems are encountered in our daily life and in disciplines such as economics,
finance, medicine, geology among others. In this paper, the power of the likelihood
ratio tests for a change point in binomial observations whose mean is dependent
on explanatory variables is investigated. Artificial neural network technique is used
to estimate the conditional means. These estimates are compared with ones
obtained using the generalized link functions.
It is shown through simulation that the power of the test increases as the size of
sample. The test is found to have less power when the change point is near the
edges than when the change point is at the centre. The test is also more likely to
detect a change if the magnitude of the change is large. In all the instances, the
neural network method is found to perform better than the parametric method.